An Improved Neural Network Algorithm and its Application in Sinter Cost Prediction

Moscow(2010)

Cited 8|Views1
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Abstract
This paper studies various training algorithms of BP neural network and proposes an improved conjugate gradient algorithm which combines conjugate gradient algorithm with inexact line search route based on generalized Curry principle. The proposed algorithm has global convergence, optimizes the learning steps using new line search rules and improves the convergence speed. The new algorithm is applied in the cost prediction of actual sintering production. Simulation results show that the algorithm has better convergence compared with traditional conjugate gradient algorithms. The MSE of prediction is 0.0098 and accuracy rate reaches 94.31%.
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Key words
neural network,sintering,improved conjugate gradient algorithm,generalized curry principle,production engineering computing,sinter cost,better convergence,convergence speed,backpropagation,convergence,least mean squares methods,global convergence,line search,proposed algorithm,improved neural network algorithm,cost prediction,traditional conjugate gradient algorithm,costs of sinter,conjugate gradient,inexact line search route,sinter cost prediction,minimum square error,new algorithm,conjugate gradient methods,neural nets,line search rule,conjugate gradient algorithm,bp neural network
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